Commit 06be7fb4 authored by Yeqing Li's avatar Yeqing Li Committed by A. Unique TensorFlower
Browse files

Internal change

PiperOrigin-RevId: 330824017
parent 12405107
...@@ -18,3 +18,4 @@ ...@@ -18,3 +18,4 @@
from official.vision.beta.tasks import image_classification from official.vision.beta.tasks import image_classification
from official.vision.beta.tasks import maskrcnn from official.vision.beta.tasks import maskrcnn
from official.vision.beta.tasks import retinanet from official.vision.beta.tasks import retinanet
from official.vision.beta.tasks import video_classification
# Lint as: python3
# Copyright 2020 The TensorFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
"""Video classification task definition."""
import tensorflow as tf
from official.core import base_task
from official.core import input_reader
from official.core import task_factory
from official.modeling import tf_utils
from official.vision.beta.configs import video_classification as exp_cfg
from official.vision.beta.dataloaders import video_input
from official.vision.beta.modeling import factory
@task_factory.register_task_cls(exp_cfg.VideoClassificationTask)
class VideoClassificationTask(base_task.Task):
"""A task for video classification."""
def build_model(self):
"""Builds video classification model."""
input_specs = tf.keras.layers.InputSpec(shape=[None, None, None, None, 3])
l2_weight_decay = self.task_config.losses.l2_weight_decay
# Divide weight decay by 2.0 to match the implementation of tf.nn.l2_loss.
# (https://www.tensorflow.org/api_docs/python/tf/keras/regularizers/l2)
# (https://www.tensorflow.org/api_docs/python/tf/nn/l2_loss)
l2_regularizer = (tf.keras.regularizers.l2(
l2_weight_decay / 2.0) if l2_weight_decay else None)
model = factory.build_video_classification_model(
input_specs=input_specs,
model_config=self.task_config.model,
num_classes=self.task_config.train_data.num_classes,
l2_regularizer=l2_regularizer)
return model
def build_inputs(self, params: exp_cfg.DataConfig, input_context=None):
"""Builds classification input."""
decoder = video_input.Decoder()
decoder_fn = decoder.decode
parser = video_input.Parser(input_params=params)
postprocess_fn = video_input.PostBatchProcessor(params)
reader = input_reader.InputReader(
params,
dataset_fn=tf.data.TFRecordDataset,
decoder_fn=decoder_fn,
parser_fn=parser.parse_fn(params.is_training),
postprocess_fn=postprocess_fn)
dataset = reader.read(input_context=input_context)
return dataset
def build_losses(self, labels, model_outputs, aux_losses=None):
"""Sparse categorical cross entropy loss.
Args:
labels: labels.
model_outputs: Output logits of the classifier.
aux_losses: auxiliarly loss tensors, i.e. `losses` in keras.Model.
Returns:
The total loss tensor.
"""
losses_config = self.task_config.losses
if losses_config.one_hot:
total_loss = tf.keras.losses.categorical_crossentropy(
labels,
model_outputs,
from_logits=True,
label_smoothing=losses_config.label_smoothing)
else:
total_loss = tf.keras.losses.sparse_categorical_crossentropy(
labels, model_outputs, from_logits=True)
total_loss = tf_utils.safe_mean(total_loss)
if aux_losses:
total_loss += tf.add_n(aux_losses)
return total_loss
def build_metrics(self, training=True):
"""Gets streaming metrics for training/validation."""
if self.task_config.losses.one_hot:
metrics = [
tf.keras.metrics.CategoricalAccuracy(name='accuracy'),
tf.keras.metrics.TopKCategoricalAccuracy(k=1, name='top_1_accuracy'),
tf.keras.metrics.TopKCategoricalAccuracy(k=5, name='top_5_accuracy')
]
else:
metrics = [
tf.keras.metrics.SparseCategoricalAccuracy(name='accuracy'),
tf.keras.metrics.SparseTopKCategoricalAccuracy(
k=1, name='top_1_accuracy'),
tf.keras.metrics.SparseTopKCategoricalAccuracy(
k=5, name='top_5_accuracy')
]
return metrics
def train_step(self, inputs, model, optimizer, metrics=None):
"""Does forward and backward.
Args:
inputs: a dictionary of input tensors.
model: the model, forward pass definition.
optimizer: the optimizer for this training step.
metrics: a nested structure of metrics objects.
Returns:
A dictionary of logs.
"""
features, labels = inputs
num_replicas = tf.distribute.get_strategy().num_replicas_in_sync
with tf.GradientTape() as tape:
outputs = model(features['image'], training=True)
# Casting output layer as float32 is necessary when mixed_precision is
# mixed_float16 or mixed_bfloat16 to ensure output is casted as float32.
outputs = tf.nest.map_structure(
lambda x: tf.cast(x, tf.float32), outputs)
# Computes per-replica loss.
loss = self.build_losses(
model_outputs=outputs, labels=labels, aux_losses=model.losses)
# Scales loss as the default gradients allreduce performs sum inside the
# optimizer.
scaled_loss = loss / num_replicas
# For mixed_precision policy, when LossScaleOptimizer is used, loss is
# scaled for numerical stability.
if isinstance(
optimizer, tf.keras.mixed_precision.experimental.LossScaleOptimizer):
scaled_loss = optimizer.get_scaled_loss(scaled_loss)
tvars = model.trainable_variables
grads = tape.gradient(scaled_loss, tvars)
# Scales back gradient before apply_gradients when LossScaleOptimizer is
# used.
if isinstance(
optimizer, tf.keras.mixed_precision.experimental.LossScaleOptimizer):
grads = optimizer.get_unscaled_gradients(grads)
# Apply gradient clipping.
if self.task_config.gradient_clip_norm > 0:
grads, _ = tf.clip_by_global_norm(
grads, self.task_config.gradient_clip_norm)
optimizer.apply_gradients(list(zip(grads, tvars)))
logs = {self.loss: loss}
if metrics:
self.process_metrics(metrics, labels, outputs)
logs.update({m.name: m.result() for m in metrics})
elif model.compiled_metrics:
self.process_compiled_metrics(model.compiled_metrics, labels, outputs)
logs.update({m.name: m.result() for m in model.metrics})
return logs
def validation_step(self, inputs, model, metrics=None):
"""Validatation step.
Args:
inputs: a dictionary of input tensors.
model: the keras.Model.
metrics: a nested structure of metrics objects.
Returns:
A dictionary of logs.
"""
features, labels = inputs
outputs = self.inference_step(features['image'], model)
outputs = tf.nest.map_structure(lambda x: tf.cast(x, tf.float32), outputs)
loss = self.build_losses(model_outputs=outputs, labels=labels,
aux_losses=model.losses)
logs = {self.loss: loss}
if metrics:
self.process_metrics(metrics, labels, outputs)
logs.update({m.name: m.result() for m in metrics})
elif model.compiled_metrics:
self.process_compiled_metrics(model.compiled_metrics, labels, outputs)
logs.update({m.name: m.result() for m in model.metrics})
return logs
def inference_step(self, inputs, model):
"""Performs the forward step."""
return model(inputs, training=False)
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